Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I want to apply a function to progressive subsets of a vector in R. I have looked at what i could find, and the apply and friends aren't quite there, and rollapply does not work on straight vectors, only zoo/ts objects.

vapply <- function(x, n, FUN=sd) {
    v <- c(rep(NA, length(x)))
    for (i in n:length(x) ) {  
        v[i] <- FUN(x[(i-n+1):i])

Is there something built in that is equivalent? Is there a better way to do it? I am trying to avoid dependencies on 3rd party libraries as I the code needs to be standalone for distribution.

share|improve this question
Can you give us some data (and desired result) to play with? – Roman Luštrik Oct 2 '11 at 19:03
I suggest you don't call it vapply, since this is already a widely-used function name (fast vector apply). – Andrie Oct 2 '11 at 19:12
This is a minor point, but I believe rollapply does 'work' just fine on an atomic vector, it just converts it to a zoo object first. So that still runs afoul of your requirement to avoid dependencies. – joran Oct 2 '11 at 19:58
A comment on your desired "standalone" condition: Anyone who is going to use your R code (or package) that you're distributing is not going to have a problem with installing any package available at CRAN. But if you're really that worried, just include the required libraries with your distribution -- built into your package, or as part of your zip/tarball/whatever distro. – Carl Witthoft Oct 2 '11 at 23:00
joran i had problems with something equivalent to this rollapply(1:100, width=10, FUN=sd). Carl, no it isn't a real showstopper, but I can't assume it will be used on a machine with a net connection and would prefer to avoid maintaining the dependancy for such a relatively trivial thing. Thank you all for stopping by. – dizzy Oct 4 '11 at 13:28
up vote 3 down vote accepted

With your choice of function name, I just HAD to make a version that actually uses vapply internally :) ...it turns out to be about 50% faster in the example below. But that of course depends a lot on how much work is done in FUN...

# Your original version - renamed...
slideapply.org <- function(x, n, FUN=sd) {
    v <- c(rep(NA, length(x)))
    for (i in n:length(x) ) {  
        v[i] <- FUN(x[(i-n+1):i])

slideapply <- function(x, n, FUN=sd, result=numeric(1)) {
    stopifnot(length(x) >= n) 
    FUN <- match.fun(FUN)
    nm1 <- n-1L
    y <- vapply(n:length(x), function(i) FUN(x[(i-nm1):i]), result)

    c(rep(NA, nm1), y) # Why do you want NA in the first entries?

x <- 1:2e5+0 # A double vector...
system.time( a <- slideapply.org(x, 50, sum) )  # 1.25 seconds
system.time( b <- slideapply(x, 50, sum) )      # 0.80 seconds
identical(a, b) # TRUE
share|improve this answer
very cool, thank you! I wanted the extra NA's so i could cbind it to an existing dataframe – dizzy Oct 4 '11 at 13:12

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.